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首页> 外文期刊>Computers in Biology and Medicine >Visual evoked potentials discrimination based on adaptive zero-tracking neural network.
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Visual evoked potentials discrimination based on adaptive zero-tracking neural network.

机译:基于自适应零跟踪神经网络的视觉诱发电位识别。

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摘要

A non-linear classifier is proposed to discriminate visual evoked potentials (VEP). It combines two techniques: the zero-tracking method and a multi-layer network. The first method consists of processing the VEP data through an adaptive linear prediction filter aiming at extracting the appropriate feature vector to be fed into the neural network. 105 VEPs collected from 48 healthy people and 57 patients are analysed to test the performances of the proposed classifier. The results obtained with a back-propagation network revealed a total success rate equal to 89%. It is also found more accurate than the latency method used in hospitals.
机译:提出了一种非线性分类器来区分视觉诱发电位(VEP)。它结合了两种技术:零跟踪方法和多层网络。第一种方法包括通过自适应线性预测滤波器处理VEP数据,目的是提取适当的特征向量以馈入神经网络。分析了从48位健康人和57位患者中收集的105个VEP,以测试该分类器的性能。使用反向传播网络获得的结果显示总成功率等于89%。还发现它比医院中使用的延迟方法更准确。

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